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Semisupervised Multiview Feature Selection for VHR Remote Sensing Images With Label Learning and Automatic View Generation

机译:具有标签学习和自动视图生成功能的VHR遥感图像的半监督多视图特征选择

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摘要

The features of very high resolution (VHR) images can be considered as multiview data. For better analysis of intrinsic data structure, a semisupervised multiview feature selection (SemiMFS) method is proposed to exploit the multiple views in this paper. In SemiMFS, feature views are automatically generated by decomposing features into multiple disjoint and meaningful groups. Each feature group represents a view, and each view describes a data characteristic. Then, features are evaluated and selected within each view. The contributions of SemiMFS are listed as follows: 1) A SemiMFS is proposed for VHR images. 2) ℓ1,2 -norm regularization and automatic view generalization are utilized in semisupervised feature selection for the intragroup sparsity, not the conventional intergroup sparsity, without any prior knowledge. Thus, SemiMFS reduces the redundancy within views by selecting features within each view, and simultaneously preserve as much information as possible by only shrinking the weight corresponding to different views. 3) An improved iterative method is developed in an ℓ1,2 -norm-based minimization problem together with label learning of unlabeled objects. The experiments on three VHR satellite images verify the effectiveness and practicability of the method, compared with traditional single-view algorithms. The experiments demonstrate that the views and the intraview features make sense, and they offer a new way to analyze data structure of VHR images.
机译:高分辨率(VHR)图像的功能可以视为多视图数据。为了更好地分析内部数据结构,本文提出了一种半监督多视图特征选择(SemiMFS)方法来利用多视图。在SemiMFS中,通过将要素分解为多个不连续且有意义的组来自动生成要素视图。每个要素组代表一个视图,每个视图描述一个数据特征。然后,在每个视图中评估和选择要素。 SemiMFS的贡献如下:1)针对VHR图像提出SemiMFS。 2)在没有任何先验知识的情况下,针对组内稀疏性而不是常规的组间稀疏性,在半监督特征选择中使用ℓ1,2-范数正则化和自动视图概括。因此,SemiMFS通过选择每个视图内的特征来减少视图内的冗余,并通过仅缩小与不同视图相对应的权重来同时保留尽可能多的信息。 3)在基于ℓ1,2-范数的最小化问题以及未标记对象的标记学习的基础上,开发了一种改进的迭代方法。与传统的单视角算法相比,在三幅VHR卫星图像上的实验证明了该方法的有效性和实用性。实验表明,视图和视图内特征是有意义的,它们为分析VHR图像的数据结构提供了一种新方法。

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